Global, regional, and national burden of rheumatoid arthritis, 1990–2020, and projections to 2050: a systematic analysis of the Global Burden of Disease Study 2021

Summary Background Rheumatoid arthritis is a chronic autoimmune inflammatory disease associated with disability and premature death. Up-to-date estimates of the burden of rheumatoid arthritis are required for health-care planning, resource allocation, and prevention. As part of the Global Burden of Diseases, Injuries, and Risk Factors Study (GBD) 2021, we provide updated estimates of the prevalence of rheumatoid arthritis and its associated deaths and disability-adjusted life-years (DALYs) by age, sex, year, and location, with forecasted prevalence to 2050. Methods Rheumatoid arthritis prevalence was estimated in 204 countries and territories from 1990 to 2020 using Bayesian meta-regression models and data from population-based studies and medical claims data (98 prevalence and 25 incidence studies). Mortality was estimated from vital registration data with the Cause of Death Ensemble model (CODEm). Years of life lost (YLL) were calculated with use of standard GBD lifetables, and years lived with disability (YLDs) were estimated from prevalence, a meta-analysed distribution of rheumatoid arthritis severity, and disability weights. DALYs were calculated by summing YLLs and YLDs. Smoking was the only risk factor analysed. Rheumatoid arthritis prevalence was forecast to 2050 by logistic regression with Socio-Demographic Index as a predictor, then multiplying by projected population estimates. Findings In 2020, an estimated 17·6 million (95% uncertainty interval 15·8–20·3) people had rheumatoid arthritis worldwide. The age-standardised global prevalence rate was 208·8 cases (186·8–241·1) per 100 000 population, representing a 14·1% (12·7–15·4) increase since 1990. Prevalence was higher in females (age-standardised female-to-male prevalence ratio 2·45 [2·40–2·47]). The age-standardised death rate was 0·47 (0·41–0·54) per 100 000 population (38 300 global deaths [33 500–44 000]), a 23·8% (17·5–29·3) decrease from 1990 to 2020. The 2020 DALY count was 3 060 000 (2 320 000–3 860 000), with an age-standardised DALY rate of 36·4 (27·6–45·9) per 100 000 population. YLDs accounted for 76·4% (68·3–81·0) of DALYs. Smoking risk attribution for rheumatoid arthritis DALYs was 7·1% (3·6–10·3). We forecast that 31·7 million (25·8–39·0) individuals will be living with rheumatoid arthritis worldwide by 2050. Interpretation Rheumatoid arthritis mortality has decreased globally over the past three decades. Global age-standardised prevalence rate and YLDs have increased over the same period, and the number of cases is projected to continue to increase to the year 2050. Improved access to early diagnosis and treatment of rheumatoid arthritis globally is required to reduce the future burden of the disease. Funding Bill & Melinda Gates Foundation, Institute of Bone and Joint Research, and Global Alliance for Musculoskeletal Health.


Introduction
Rheumatoid arthritis is a chronic autoimmune inflammatory disease that presents as a symmetrical polyarthritis characterised by joint pain, swelling, and stiffness.It can affect any synovial joint in the body, most commonly starting in the small joints of the hands and feet, with the potential to impact every aspect of daily living.High levels of inflammation are associated with fatigue and impairment of participation in occupational, recreational, and societal roles.Rheumatoid arthritis can affect men, women, and children at any age, but is 2-3 times more likely to occur in women and is more common with increasing age, with onset most often occurring at 60-70 years of age. 1 Without adequate treatment, the disease can lead to progressive joint destruction and deformity, causing long-term disability, chronic pain, and premature death.
Treatment for rheumatoid arthritis has improved considerably over time, leading to better health outcomes.However, access to treatment varies globally and substantial inequities exist. 2 The optimal management of rheumatoid arthritis involves early diagnosis within a 3-month window of opportunity and treatment with conventional synthetic disease-modifying antirheumatic location, and year.In addition, this study sought to report on smoking as a risk factor for rheumatoid arthritis and to forecast rheumatoid arthritis prevalence to 2050.

Overview
GBD 2021 is a systematic analysis of health loss produced by 369 diseases, injuries, risk factors, impairments, and causes of death.GBD 2021 estimated rheumatoid arthritis mortality, incidence, prevalence, and associated disability by year, age, and sex for 204 countries and territories, using a Bayesian meta-regression tool, DisMod-MR 2.1.Data are reported by country, region, and super-region, with super-regions based on epidemiological similarity and geographical closeness.GBD estimated rheumatoid arthritis prevalence in all countries.For most disease models in GBD, input data were not available for every location where we estimated prevalence.In these cases, prevalence estimates in DisMod-MR 2.1 were made through two main mechanisms: (1) an analytical cascade with initial models at more aggregate levels (global, super-region, and region), with information from such models passed as priors to models at the geographical level below; and (2) predictive covariates.In regions with no data, estimates were informed by super-region priors.GBD adheres to the GATHER statement. 14This Article was produced as part of the GBD Collaborator Network and in accordance with the GBD protocol.

Input data
An initial systematic review of rheumatoid arthritis incidence and prevalence in population-representative data sources throughout the world was done for GBD 2010. 10 The systematic review was updated for GBD 2017, 11 with six additional studies encountered opportunistically during data review added for GBD 2021 (appendix p 2).In addition, health insurance claims data from the USA for 2000, 2010-12, and 2014-16 by state and claims data from Taiwan for 2016 were included (International Classification of Diseases codes listed in the appendix [p 2]).Each data source was given a unique identifier and catalogued in the Global Health Data Exchange.

Case definition
The reference case definition for rheumatoid arthritis was based on the 1987 American College of Rheumatology (ACR) classification criteria, 15 as the majority of population-based data available used this case definition.These criteria stipulate that rheumatoid arthritis is defined by the presence of four of seven criteria: morning stiffness; arthritis of three or more joint areas; symmetric arthritis; arthritis of hand joints; rheumatoid nodules; serum rheumatoid factor; and radiographical changes.The first four criteria must be present for at least 6 weeks to fulfil the case definition.
Data sources using diagnostic criteria other than the reference criteria, such as the 2010 ACR-European League Against Rheumatism (EULAR) criteria, 16 were adjusted using a meta-regression tool, MR-BRT (Meta-Regression-Bayesian Regularised Trimmed), as described elsewhere. 17Claims data from the USA from 2010 onward and from Taiwan were additionally treated as reference case definition data, as it was assumed that most cases of rheumatoid arthritis would intersect with the health system in these countries.Adjustment factors were derived by pairing data sources with different case definitions by age, sex, year, and location, then running an MR-BRT model meta-analysis on the logit difference between the prevalence of alternative and reference case definitions (appendix p 3).After adjusting data for case definition, data were considered to be outliers if they had an age-standardised mean of two or more median absolute deviations above the median by sex, year, and location.

Cause of death modelling
Data from vital registration systems were used to estimate mortality due to rheumatoid arthritis.The standard Cause of Death Ensemble model (CODEm), a highly automated tool that selects an ensemble of model types and predictive covariates based on out-ofsample predictive validity, was used to estimate deaths due to rheumatoid arthritis by location, year, age, and sex (appendix pp 5-6).Mortality rates due to rheumatoid arthritis and all other causes were scaled to all-cause mortality estimated from demographic data sources, mainly vital registration systems, surveys, and censuses.YLLs were calculated by multiplying the estimated number of deaths due to rheumatoid arthritis in each age group by the remaining life expectancy, as derived from the standard GBD life table. 17

Data processing and disease modelling
Before fitting models, prevalence data reported with wide age ranges and male and female sexes combined were split by age and sex.For data sources that reported prevalence by age and sex separately, the ratio of male-tofemale prevalence was applied to age-specific datapoints to split into age-specific and sex-specific datapoints.Subsequently, we ran an MR-BRT model on the logtransformed ratio of male-to-female prevalence for sexspecific data sources, then used the pooled sex ratio to split remaining combined sex datapoints into sex-specific data.For data sources that reported estimates across age groups spanning 25 years or more, we applied the global prevalence age pattern estimated by DisMod-MR 2.1 in the GBD 2017 round to split data into 5-year age groups.It was assumed that there was no incidence or prevalence of rheumatoid arthritis before 5 years of age.
Rheumatoid arthritis prevalence was modelled with DisMod-MR 2.1, drawing on data from 45 countries and using mean BMI as a predictive covariate to help predict estimates in countries with no primary data.Data on excess mortality were first calculated by dividing available prevalence datapoints by corresponding causespecific mortality data by age, sex, year, and location.These derived excess mortality data were modelled in MR-BRT by age and sex with a prior on the Healthcare Access and Quality Index, 18 such that as this index increased excess mortality decreased, and were then included in the model (appendix pp 5-6).Uncertainty was propagated by sampling 100 model runs (draws) at each computational step and combining uncertainty from multiple data sources and data adjustments.Uncertainty intervals (UIs) were defined as the 2•5th and 97•5th percentiles of the ordered draws from 100 model runs.Data from seven countries (France, Lebanon, Spain, Finland, USA, Canada, and Sri Lanka) classifying severity according to Health Assessment Questionnaire scores were meta-analysed and scaled to fit to 1 for mild, moderate, and severe disease.This process involved normalising the disability weights derived from Health Assessment Questionnaire scores such that the maximum disability weight was equal to 1. Cutoff scores were set as less than 1 for mild, 1 to less than 2 for moderate, and 2 or greater for severe rheumatoid arthritis (appendix p 6).YLDs were calculated by multiplying the prevalence of each severity category by the severityspecific disability weights.Disability weights in GBD range from 0 (equivalent to perfect health) to 1 (signifying full loss of health; details in appendix p 6). 19 YLDs were corrected for independent co-occurrence with any other condition for each age, sex, year, and location category. 17ALYs were calculated by summing YLLs and YLDs.

Risk estimation
Smoking was the only risk factor included in GBD 2021 for rheumatoid arthritis.GBD 2021 included risk factors for which there was probable evidence of a risk-outcome relationship, included more than one study type, at least two cohorts, no substantial and unexplained heterogeneity, low risk of confounding and selection bias, and biologically acceptable dose-response gradients.Relative risk data for smoking and rheumatoid arthritis were derived from six published cohort or case-control studies.Additional information can be found in the GBD 2019 risk factor publication. 20

Estimate projections
Forecasted global and regional cases of rheumatoid arthritis to the year 2050 were computed by forecasting prevalence rates and population estimates. 21Health outcomes are closely tied to Socio-demographic Index (SDI), a compound indicator of income per capita, years of schooling, and total fertility in women younger than 25 years. 17After forecasting mortality, 22 the following regression was used to forecast the ratio of mortality to prevalence: logit(R y,a,s,l ) = (β 1 + δ a,s,l )SDI y,l + β 0 + γ a,s,l + ε y,a,s,l , In  Values in parentheses are 95% uncertainty intervals.Super-region and region numbers do not sum to the global prevalence due to rounding and modelling adjustments for nations with populations below 50 000.DALY=disability-adjusted life-year.
Table : Prevalence and burden of DALYs and deaths due to rheumatoid arthritis in 2020, and changes from 1990 to 2020, by sex and region this equation R y,a,s,l is the year-age-sex-location-specific ratio for a given cause, the covariate SDI y,l is the locationyear-specific SDI, γ a,s,l is the age-sex-location-specific random intercept, δ a,s,l is the age-sex-location-specific slope on SDI, and ε y,a,s,l is the residual term.Prevalence was then calculated by dividing forecasted mortality by the forecasted mortality-to-prevalence ratio after transforming values back into normal space.Results were truncated by calculating the mean absolute deviation across dimensions of age, sex, and location, then finding floor and ceiling values based on a multiplier for the mean absolute deviation that covers 97•5% of the results across all dimensions.This is a more flexible truncation method than a hard cutoff, as it adapts to the bounds of the data and allows elimination of extreme values obtained in the division of mortality by the mortality-to-prevalence ratio.The prevalence rates were shifted to align with the draws in the last year of GBD data in logit space.To obtain forecasted cases, forecasted rates were multiplied by forecasted population values. 21Validation testing was conducted with estimates from 1990 to 2010 to project prevalence from 2010 to 2019 by age, sex, location, and year.The projections were then compared to the GBD prevalence results for this period by calculating the root mean squared error and bias (calculated as the median value of all predicted minus observed values by age, sex, location, and year).In all the four tests the model root mean squared error was less than 0•0001 and bias less than 0•0001.A Das Gupta decomposition analysis 23 was done to determine the relative contributions of population growth, population ageing, and changes in prevalence unrelated to demographics to the change in case numbers between 2020 and 2050.

Role of the funding source
The funder of the study had no role in the study design, data collection, data analysis, data interpretation, or writing of the report.

Results
Non-fatal estimates were based on input of 98 prevalence and 25 incidence studies in addition to claims data, providing data from 45 countries covering all seven GBD super-regions and 16 of the 21 GBD regions.Subnational data were available from 20 countries (appendix p 5). Fatal estimates were derived from a total of 2595 sources with cause of death data, from 120 countries.In 2020, there were an estimated 17  Globally, in 2020, there were 719 000 YLLs (95% UI 644 000-828 000) due to rheumatoid arthritis for male and female sexes combined, with an age-standardised YLL rate of 8•6 (7•7-9•9) per 100 000 population.The age-standardised YLL rate for females ( As with prevalence, YLD and DALY rates for females were considerably higher than for males across all age groups.YLDs for females peaked in the 70-74 years age group and DALYs around age 75-79 years, followed by a decrease.For males, the peak YLD rate was in the 75-79 years age group, and DALYs peaked around age 85-89 years (figure 1).
Smoking was the only risk factor for rheumatoid arthritis included in GBD 2021, accounting for 217 000 (103 000-320 000) or 7•1% (95% UI 3•6-10•3)  A decomposition analysis globally and by region shows the relative contribution of population growth, population ageing, and changes in prevalence rate to the forecasted increase in cases (figure 4).Population growth was the largest contributor in most locations.Regions with little change in forecasted case numbers between 2020 and 2050 also had negative population growth, including central and eastern Europe and the highincome Asia Pacific region.East Asia also showed negative population growth; however, population ageing contributed to the increase in forecasted prevalence of rheumatoid arthritis in that region.Changes in prevalence rate were the largest contributor to the increase in case numbers in eastern sub-Saharan Africa.

Discussion
This study provides updated global estimates of mortality, prevalence, and disability (YLDs and DALYs) for rheumatoid arthritis, as well as providing forecasted estimates of rheumatoid arthritis disease burden to the year 2050 for the first time.Global age-standardised death rate decreased by around 23•8% between 1990 and 2020, and decreased in all super-regions, most prominently in the high-income super-region, where there was a decrease in deaths due to rheumatoid arthritis of approximately 43•8% over the same period.The decrease in mortality in high-income countries might reflect better disease control and outcomes following early intervention and treat-to-target treatment strategies in high-income but not lower-income countries over this time. 24,25he GBD age-standardised global prevalence rate of rheumatoid arthritis was 208•8 cases per 100 000 (0•21%) in 2020.This rate is considerably lower than that found in a 2021 systematic review and meta-analysis by Almutairi and colleagues 26 of papers published between January, 1980, and June, 2019, which reported the global pooled period-prevalence of rheumatoid arthritis to be 460 per 100 000 (0•46%).The reasons for this discrepancy are likely to be multifactorial, including different data sources due to different search strategies and different inclusion and exclusion criteria (123 sources in GBD vs 67 studies included in Almutairi and colleagues' review), different case definitions, different meta-analysis models and different definitions of prevalence (ie, age-standardised prevalence reported in GBD).Another systematic review by the same group included 60 studies and also found a greater mean period  prevalence of 51 cases per 100 000 (0•51%) between 1955 and 2015. 27Almutairi and colleagues hypothesised that the GBD use of modelling to account for data sparsity across under-represented regions underestimates true prevalence.The accuracy of any future global prevalence estimates for rheumatoid arthritis will no doubt be improved by more data from currently under-represented regions.Our estimates show a lower prevalence in low-income and middle-income countries than high-income countries, a gradient that has been noted before for rheumatoid arthritis 28 but is also seen in other autoimmune diseases such as multiple sclerosis and type 1 diabetes.Ignoring such a gradient in a metaanalysis dominated by studies from high-income countries would lead to an overestimate.The non-fatal estimates generated in this study show that the number of cases of rheumatoid arthritis globally more than doubled from 1990 to 2020.This increase is in line with the increasing prevalence of other autoimmune diseases globally, 29 and is likely to be multifactorial due to population ageing or unknown or unmeasured risk factors, but could also be confounded by methodological issues such as data sparsity.Also in line with other autoimmune diseases was the higher prevalence observed in females than in males across all age groups. 30espite this observed increase in prevalence, cases of rheumatoid arthritis might be under-reported.Not all patients have access to health-care services, especially in low-income countries, where confirmation of a diagnosis of rheumatoid arthritis by a physician might not be available.Additionally, under-resourced populations from high-income countries might also be underreported, as many migrant workers in these countries might not have access to health insurance or health-care services.
By 2050, we forecast that there will be 31•7 million individuals worldwide with rheumatoid arthritis, 68•7% of whom will be female.In most regions, the increase is mainly due to population growth and ageing, but in sub-Saharan Africa and south Asia, increases in prevalence rate, probably driven by increasing economic development of countries, also contribute to the forecasted increase.These forecasts are based on the reference definition in this study, the 1987 ACR criteria, which identify established rheumatoid arthritis, and thus only those with later disease are included.Data sources using diagnostic criteria other than the reference criteria, such as the 2010 ACR-EULAR criteria, 16 were adjusted in the modelling process.As further studies use updated definitions of rheumatoid arthritis (which emphasise rheumatoid arthritis characteristics that emerge early in the course of the disease) 31 and data become available for inclusion in the model, the prevalence of rheumatoid arthritis is likely to increase as those with early rheumatoid arthritis (who would not meet the criteria of established rheumatoid arthritis) would be included.This change in definition has not been included in the forecasted rates reported here.As population-based rheumatoid arthritis data using the 2010 ACR-EULAR criteria emerge, the reference case and data adjustments can be modified accordingly in future GBD iterations.
A strength of this study is that it provides a unique global perspective of disease burden that GBD provides over time.GBD has rigorous and standardised methodologies for obtaining fatal and non-fatal data and generating estimates.These methodologies are reviewed and, where necessary, updated at each GBD iteration.GBD methods aim to correct for changes in case definitions or other advancements in diagnosis over time through crosswalking.In addition, for the first time, the current GBD study included forecasted prevalence predictions to 2050.
This analysis reported on smoking as a risk factor for rheumatoid arthritis and strategies to reduce smoking globally should reduce rheumatoid arthritis prevalence, along with benefiting many other health conditions.We estimated the proportion of rheumatoid arthritis attributable to smoking in our risk factor analyses.These estimates changed by age, sex, and location according to the changes in risk exposure: a decrease in most parts of the world since 1990, with the exception of eastern Europe and central Asia, where the attributable DALYs continue to show some increase.3][34][35][36] Based on currently available evidence for potentially modifiable risks for rheumatoid arthritis, a narrative review 32 recommended cessation of smoking, reducing occupational exposure to silica and dusts, maintaining a healthy weight, maintaining good dental hygiene, maximising breast feeding, maximising dietary quality, avoidance of high-salt diets, increasing intake of omega-3 fatty acids and fish, reducing consumption of sugar-sweetened soft drinks, consuming moderate levels of alcohol, and remaining vitamin D replete.New evidence suggests that up to 40% of cases of rheumatoid arthritis are potentially modifiable through a range of lifestyle factors, including maintaining a healthy weight and healthy diet, maintaining good dental hygiene, and reducing exposure to occupational risks. 32These factors could vary by region.Only smoking has been included as a risk in GBD to date, and an opportunity exists to build on this in subsequent analyses.Screening first-degree relatives of people with early rheumatoid arthritis for their risk profile and implementing targeted lifestyle prevention strategies have potential to reduce the forecasted 2050 prevalence.
Although GBD provides estimates of global disease burden, data sparsity, particularly from low-income and middle-income regions, remains a significant limitation for rheumatoid arthritis.Non-fatal estimates are largely based on modelling, with actual non-fatal data from population-based studies or insurance claims records (from high-income countries only) available from 45 of 204 countries.Therefore, differences between regions should be interpreted with caution.For example, although prevalence was lowest in western sub-Saharan Africa, Oceania, and southeast Asia, these regions had limited sources for data inclusion.The inclusion of claims data from the USA and Taiwan, both high-income countries, might not represent the patients seen in all regions, although the GBD modelling methods apply adjustments to account for these alternate case definitions.In addition, the heterogeneity of the studies contributing data leads to greater uncertainty and requires methodological adjustments, including standardisation of case definitions.The uncertainty interval is tighter in locations with good data coverage, such as high-income countries, whereas in data-sparse locations (eg, countries in sub-Saharan Africa), the uncertainty interval tends to be wider.Currently, extraarticular manifestations of rheumatoid arthritis are not taken into account within the estimates, and such manifestations can occur in more than a third of people with rheumatoid arthritis, with inflammation in other parts of the body, including the eyes, lungs, heart, and other internal organs. 37Extra-articular involvement is associated with poorer outcomes and increased mortality in rheumatoid arthritis, 37 although the incidence of severe extra-articular manifestations has declined over time with early, effective therapy. 38utcomes in rheumatoid arthritis, including prevention of disability, are dependent on timely access to treatment, including conservative care, and adequate control of disease activity to maintain improved ability to undertake activities of daily living.Early intervention within the so-called window of opportunity and use of treat-to-target strategies have been shown to substantially reduce disease severity and subsequent disability and mortality in rheumatoid arthritis. 24,25Therefore, global variation in access to treatment is expected to impact rheumatoid arthritis severity across regions; however, there are currently few studies reporting data on rheumatoid arthritis severity globally.Going forward, more epidemiological studies addressing risk factors, incidence, prevalence, severity, and mortality are required, particularly in low-income and middle-income regions, to better inform and improve the accuracy of GBD estimates.Work to identify barriers and enablers to epidemiological studies in regions of data-sparsity is required, in addition to better resources to support such studies.Severity distribution estimates are likely to vary considerably and the wholesale application of the estimates to all regions is a current limitation likely to lead to an underestimation of rheumatoid arthritis disease burden, particularly in countries with poor access to care.In future work, we plan to approximate a gradient in rheumatoid arthritis severity that is linked to access to treatment by analysing effect sizes of the main treatment options from Cochrane review libraries, and linking this to information on access to various treatments in locations with data on rheumatoid arthritis severity.
GBD cause of death data for rheumatoid arthritis are derived from civil registration and vital statistics registries and might under-represent rheumatoid arthritis as a cause of death, and regional variations might occur.A 2015 study looking at death certificates among patients with rheumatoid arthritis in the USA found that only 17•7% of deaths had rheumatoid arthritis mentioned on the death certificate. 39A similar study looking at a Finnish rheumatoid arthritis population from the 1980s found that the proportions were 53-65%. 40hus, some deaths not assigned to rheumatoid arthritis as the underlying cause might be directly caused by rheumatoid arthritis.While GBD estimates mortality directly attributable to rheumatoid arthritis, it does not capture mortality that might be increased in association with rheumatoid arthritis and related treatments, such as cardiovascular disease, infection, malignancy, and respiratory disease.Fatal estimates for rheumatoid arthritis are also limited by a lack of strong predictive covariates.Therefore, the accuracy of estimates is limited in data-sparse locations, particularly sub-Saharan Africa and locations that only report verbal autopsy data, because rheumatoid arthritis cannot be captured as an underlying cause in verbal autopsy interviews.
Data forecasting has shown a substantial increase in rheumatoid arthritis prevalence is expected by 2050, highlighting the need for global projects to control the burden of rheumatoid arthritis, particularly in low-income and middle-income countries.These projections have not accounted for the effect of COVID-19 on the burden of rheumatoid arthritis, which could include reduced access to pharmaceutical and non-pharmaceutical treatment regimens and higher mortality in older adults.Addressing the unmet rehabilitation need, such as the WHO Rehabilitation 2030 call for action, 41 is imperative if disability is to be minimised, and equitable rehabilitation services for people with rheumatoid arthritis are required globally.Adequate resourcing of programmes that target both prevention and modification of risk factors such as smoking 42 and obesity will also be important globally.We found a higher prevalence of rheumatoid arthritis among females than males; however, case fatality was higher in males.The higher prevalence among females is in keeping with other autoimmune disorders and is hypothesised to be related to differences in the sex chromosomes and hormonal factors, 43 and evidence suggests that higher case-fatality in males might be due to innate and adaptive immune responses in addition to environmental, dietary, and lifestyle factors. 44hile use of biological or targeted synthetic DMARDs is now widespread in high-income regions, drugs such as methotrexate and sulfasalazine, used as monotherapy or in combinations, remain very effective and affordable conventional synthetic DMARD treatment options for patients with rheumatoid arthritis globally, and 2•5 mg methotrexate tablets are listed for inflammatory arthritis on the WHO Model List of Essential Medicines. 45Access to an effective dose of methotrexate (20 mg per week) early in the disease course of rheumatoid arthritis can significantly reduce disease burden; however in low-income and middle-income regions, access to medical professionals who can diagnose rheumatoid arthritis and prescribe and monitor methotrexate at an appropriate dose can be limited.A qualitative study of physicians from 29 African countries assessed barriers to methotrexate prescribing in low versus medium-high Human Development Index countries, and found methotrexate dosing to be similar.Barriers to methotrexate use included inconsistent supply, financial restrictions (such as cost of travelling to dispensing sites), patient hesitancy related to cultural beliefs and societal roles, few prescribers, prevalent infections (especially viral hepatitis, tuberculosis, and HIV), and availability and cost of safety monitoring. 46A clearer picture of how these potentially modifiable factors might influence outcomes could be gained if treatment data were collected by GBD in the future.
Rheumatoid arthritis prevalence is expected to increase to the year 2050, leading to greater burden on health systems.Although modelling suggests that this increase is primarily related to ageing and the growing population, addressing risk factors such as smoking cessation could reduce rheumatoid arthritis incidence and prevalence in some regions.Limitations in these estimates for rheumatoid arthritis include data sparsity, particularly from low-income and middle-income countries, for both fatal and non-fatal outcomes; the paucity of risk factor attribution, which was limited to smoking only, although a range of other modifiable risk factors are being increasingly recognised; and the application of a standard high-income region-derived severity distribution to all countries.GBD estimates have traditionally not addressed access to health care and treatments; however, rheumatoid arthritis is a key example of a condition in which timely access to medical care for early diagnosis, treatment, and monitoring has a crucial role in health outcomes, and access varies substantially by region.Future GBD estimates for rheumatoid arthritis should aim to address regional variations in all these factors.Although some proven interventions such as biological or targeted synthetic DMARDs are costly, making them inaccessible to lowincome and middle-income countries, increasing uptake of low-cost conventional synthetic DMARDs has the potential to considerably reduce the burden of rheumatoid arthritis in all regions.Increasing global awareness of the importance of early diagnosis and treatment of rheumatoid arthritis will help to reduce the future impact of the disease.

Figure 2 :
Figure 2: Age-standardised prevalence rate of rheumatoid arthritis for male and female sexes combined in 2020

Figure 4 :
Figure 4: Decomposition of projected change in the number of prevalent rheumatoid arthritis cases by region, 2020-50

Figure 3 :
Figure 3: Total global cases of rheumatoid arthritis forecasted to the year 2050 Shaded areas represent 95% uncertainty intervals.